Memristive multi-wing chaotic Hopfield neural network for LiDAR data security

Quanli Deng, Chunhua Wang, Yichuang Sun, Gang Yang

Research output: Contribution to journalArticlepeer-review

Abstract

By applying the synapse-like electrical element, memristor, complex chaotic dynamics can be generated in Hopfield neural networks. However, the multi-wing butterfly chaotic attractor generated by the memristive Hopfield neural network remains undiscovered. In this paper, we introduce a novel chaotic multi-wing butterfly generation method within the Hopfield neural network (HNN). Our proposed approach incorporates a piecewise linear memristor to establish coupling between two neurons in a three-neuronal HNN. This design allows straightforward control over the number of butterfly wings by adjusting the memristor parameters. We conduct a comprehensive numerical analysis of the chaotic butterfly dynamics using phase portraits, Lyapunov exponent spectra, state variable bifurcation diagrams, and bi-parameter dynamical maps. Furthermore, the proposed model is implemented based on the digital circuit FPGA platform and its correctness is verified through experiments. Moreover, we leverage the developed chaotic multi-wing butterfly to construct a secure LiDAR point cloud system. The system employs a chaotic permutation and diffusion algorithm based on the proposed multi-wing butterfly. Security performance and time efficiency are evaluated using multiple numerical methods, and the results demonstrate the effectiveness of the proposed LiDAR data secure system.
Original languageEnglish
JournalNonlinear Dynamics
Early online date20 Feb 2025
DOIs
Publication statusE-pub ahead of print - 20 Feb 2025

Keywords

  • Data secure
  • FPGA implementation
  • Memristive neural network
  • Multi-wing attractor

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